基于学习的布料材料回收视频

Shan Yang, Junbang Liang, M. Lin
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引用次数: 58

摘要

图像和视频的理解可以更好地重建物理世界。现有的方法主要关注重建场景的几何形状和视觉外观。在本文中,我们扩展了图像理解的前沿,提出了一种从视频中恢复布料材料特性的方法。以前的布料材料回收方法通常需要标记或复杂的实验装置来获得物理性质,或者仅限于某些类型的图像或视频。我们的方法利用运动布料的外观变化来推断其物理性质。为了提取布料的信息,我们的方法描述了布料几何形状的运动和视觉外观。我们将卷积神经网络(CNN)和长短期记忆(LSTM)神经网络应用于视频布料的材料恢复。我们还利用模拟数据来帮助统计学习视觉外观和布料材料类型之间的映射。通过使用模拟数据集和实际录制的视频进行验证,证明了我们方法的有效性。
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Learning-Based Cloth Material Recovery from Video
Image and video understanding enables better reconstruction of the physical world. Existing methods focus largely on geometry and visual appearance of the reconstructed scene. In this paper, we extend the frontier in image understanding and present a method to recover the material properties of cloth from a video. Previous cloth material recovery methods often require markers or complex experimental set-up to acquire physical properties, or are limited to certain types of images or videos. Our approach takes advantages of the appearance changes of the moving cloth to infer its physical properties. To extract information about the cloth, our method characterizes both the motion and the visual appearance of the cloth geometry. We apply the Convolutional Neural Network (CNN) and the Long Short Term Memory (LSTM) neural network to material recovery of cloth from videos. We also exploit simulated data to help statistical learning of mapping between the visual appearance and material type of the cloth. The effectiveness of our method is demonstrated via validation using both the simulated datasets and the real-life recorded videos.
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